Heteroskedasticity, temporal and spatial correlation matter

As economic time series or cross sectional data are typically affected by serial correlation and/or heteroskedasticity of unknown form, panel data typically contains some form of heteroskedasticity, serial correlation and/or spatial correlation. Therefore, robust inference in the presence of heteros...

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Main Authors: Ladislava Grochová, Luboš Střelec
Format: Article
Language:English
Published: Mendel University Press 2013-01-01
Series:Acta Universitatis Agriculturae et Silviculturae Mendelianae Brunensis
Subjects:
Online Access:https://acta.mendelu.cz/61/7/2151/
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spelling doaj-88a2e74f199040afaaf396ae8c8478ce2020-11-24T20:47:03ZengMendel University PressActa Universitatis Agriculturae et Silviculturae Mendelianae Brunensis1211-85162464-83102013-01-016172151215510.11118/actaun201361072151Heteroskedasticity, temporal and spatial correlation matterLadislava Grochová0Luboš Střelec1Department of Economics, Department of Statistics and Operation Analysis, Mendel University in Brno, 613 00 Brno, Czech RepublicDepartment of Economics, Department of Statistics and Operation Analysis, Mendel University in Brno, 613 00 Brno, Czech RepublicAs economic time series or cross sectional data are typically affected by serial correlation and/or heteroskedasticity of unknown form, panel data typically contains some form of heteroskedasticity, serial correlation and/or spatial correlation. Therefore, robust inference in the presence of heteroskedasticity and spatial dependence is an important problem in spatial data analysis. In this paper we study the standard errors based on the HAC of cross-section averages that follows Vogelsang’s (2012) fixed-b asymptotic theory, i.e. we continue with Driscoll and Kraay approach (1998). The Monte Carlo simulations are used to investigate the finite sample properties of commonly used estimators both not accounting and accounting for heteroskedasticity and spatiotemporal dependence (OLS, GLS) in comparison to brand new estimator based on Vogelsang’s (2012) fixed-b asymptotic theory in the presence of cross-sectional heteroskedasticity and serial and spatial correlation in panel data with fixed effects. Our Monte Carlo experiment shows that the OLS exhibits an important downward bias in all of the cases and almost always has the worst performance when compared to the other estimators. The GLS corrected for HACSC performs well if time dimension is greater than cross-sectional dimension. The best performance can be attributed to the Vogelsang’s estimator with fixed-b version of Driscoll-Kraay standard errors.https://acta.mendelu.cz/61/7/2151/heteroskedasticityserial correlationspatial correlationMonte Carlo simulationpanel dataHAC estimator
collection DOAJ
language English
format Article
sources DOAJ
author Ladislava Grochová
Luboš Střelec
spellingShingle Ladislava Grochová
Luboš Střelec
Heteroskedasticity, temporal and spatial correlation matter
Acta Universitatis Agriculturae et Silviculturae Mendelianae Brunensis
heteroskedasticity
serial correlation
spatial correlation
Monte Carlo simulation
panel data
HAC estimator
author_facet Ladislava Grochová
Luboš Střelec
author_sort Ladislava Grochová
title Heteroskedasticity, temporal and spatial correlation matter
title_short Heteroskedasticity, temporal and spatial correlation matter
title_full Heteroskedasticity, temporal and spatial correlation matter
title_fullStr Heteroskedasticity, temporal and spatial correlation matter
title_full_unstemmed Heteroskedasticity, temporal and spatial correlation matter
title_sort heteroskedasticity, temporal and spatial correlation matter
publisher Mendel University Press
series Acta Universitatis Agriculturae et Silviculturae Mendelianae Brunensis
issn 1211-8516
2464-8310
publishDate 2013-01-01
description As economic time series or cross sectional data are typically affected by serial correlation and/or heteroskedasticity of unknown form, panel data typically contains some form of heteroskedasticity, serial correlation and/or spatial correlation. Therefore, robust inference in the presence of heteroskedasticity and spatial dependence is an important problem in spatial data analysis. In this paper we study the standard errors based on the HAC of cross-section averages that follows Vogelsang’s (2012) fixed-b asymptotic theory, i.e. we continue with Driscoll and Kraay approach (1998). The Monte Carlo simulations are used to investigate the finite sample properties of commonly used estimators both not accounting and accounting for heteroskedasticity and spatiotemporal dependence (OLS, GLS) in comparison to brand new estimator based on Vogelsang’s (2012) fixed-b asymptotic theory in the presence of cross-sectional heteroskedasticity and serial and spatial correlation in panel data with fixed effects. Our Monte Carlo experiment shows that the OLS exhibits an important downward bias in all of the cases and almost always has the worst performance when compared to the other estimators. The GLS corrected for HACSC performs well if time dimension is greater than cross-sectional dimension. The best performance can be attributed to the Vogelsang’s estimator with fixed-b version of Driscoll-Kraay standard errors.
topic heteroskedasticity
serial correlation
spatial correlation
Monte Carlo simulation
panel data
HAC estimator
url https://acta.mendelu.cz/61/7/2151/
work_keys_str_mv AT ladislavagrochova heteroskedasticitytemporalandspatialcorrelationmatter
AT lubosstrelec heteroskedasticitytemporalandspatialcorrelationmatter
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